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Multivariate time series clustering based on common principal component analysis

机译:基于共同主成分分析的多元时间序列聚类

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Time series clustering is often applied to pattern recognition and also as the basis of the tasks in the field of time series data mining including dimensionality reduction, feature extraction, classification and visualization. Due to the high dimensionality of multivariate time series and most of the previous work concentrating on univariate time series clustering, a novel method which is based on common principal component analysis, is proposed to achieve multivariate time series clustering more fast and accurately. It is inspired by the traditional clustering method K-Means and can construct a common projection axes as prototype of each cluster. Moreover, the reconstruction error of each multivariate time series projected on the corresponding common projection axes are used to reassign the member of the cluster. The detailed algorithm of the proposed method Mc2PCA is given and the time complexity is analyzed, which shows that the proposed method is very fast and its time complexity is linear to the number of multivariate time series objects. Unlike the traditional methods, the proposed method considers the relationship among variables and the distribution of the original data values of multivariate time series. The experimental results in the various datasets demonstrate that Mc2PCA is superior to the traditional methods for multivariate time series clustering. (C) 2019 Elsevier B.V. All rights reserved.
机译:时间序列聚类通常应用于模式识别,并作为时间序列数据挖掘领域中任务的基础,包括降维,特征提取,分类和可视化。鉴于多元时间序列的高维性和以往大部分工作集中在单变量时间序列聚类上,提出了一种基于公共主成分分析的新方法,可以更快,更准确地实现多元时间序列聚类。它受传统聚类方法K-Means的启发,可以构造一个通用的投影轴作为每个聚类的原型。此外,投影在相应公共投影轴上的每个多元时间序列的重构误差用于重新分配聚类成员。给出了所提方法Mc2PCA的详细算法,并对时间复杂度进行了分析,结果表明所提方法速度很快,且时间复杂度与多元时间序列对象的数量呈线性关系。与传统方法不同,该方法考虑了变量之间的关系以及多元时间序列的原始数据值的分布。在各种数据集中的实验结果表明,Mc2PCA优于传统的多元时间序列聚类方法。 (C)2019 Elsevier B.V.保留所有权利。

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